Optimization control of STATCOM in power system with Adaptive Critic Designs

Shaojian Song, Yi He, Xiaofeng Lin, Bilian Liao
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引用次数: 4

Abstract

This paper presents a novel nonlinear optimal neurocontroller for a static compensator (STATCOM) connected to a power system. The design for the optimal controller is based on a class of Adaptive Critic Designs (ACDs) called the Action Dependant Heuristic Dynamic Programming (ADHDP). The ADHDP class of ACDs uses two neural networks, an “Action” network (which actually sends the control signals) and a “Critic” network (which critics the action network performance). The optimal control policy is evolved by the action network over a period of time using the feedback signals provided by the critic network. A series of simulations on STATCOM connected to a single machine infinite bus system with proposed neurocontroller and conventional PI controller were carried out in MATLAB/SIMULINK. Results are presented to show that the ADHDP-based neurocontroller performs better than the conventional PI controller, especially when the system conditions and configuration were changed. The numerical simulation results of using this method in one STATCOM connected to power system show that the control scheme can maintain voltage at load bus and prevent the occurrence of voltage collapse when the large disturbances occur.
基于自适应临界设计的电力系统STATCOM优化控制
针对与电力系统相连接的静态补偿器(STATCOM),提出了一种新的非线性最优神经控制器。最优控制器的设计是基于一类称为动作依赖启发式动态规划的自适应批评设计(ACDs)。ADHDP类acd使用两个神经网络,一个“行动”网络(实际发送控制信号)和一个“批评”网络(批评行动网络的性能)。最优控制策略由行动网络在一段时间内利用批评网络提供的反馈信号进化而来。在MATLAB/SIMULINK中对STATCOM连接单机无限总线系统,采用所提出的神经控制器和传统PI控制器进行了一系列仿真。结果表明,基于adhdp的神经控制器比传统的PI控制器性能更好,特别是当系统条件和配置发生变化时。将该方法应用于一个与电力系统相连的STATCOM的数值仿真结果表明,该控制方案能够在发生较大扰动时保持负载母线电压,防止电压崩溃的发生。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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